RDMNet: Reliable Dense Matching Based Point Cloud Registration for
Autonomous Driving
- URL: http://arxiv.org/abs/2303.18084v1
- Date: Fri, 31 Mar 2023 14:22:32 GMT
- Title: RDMNet: Reliable Dense Matching Based Point Cloud Registration for
Autonomous Driving
- Authors: Chenghao Shi, Xieyuanli Chen, Huimin Lu, Wenbang Deng, Junhao Xiao,
Bin Dai
- Abstract summary: We propose a novel network, named RDMNet, to find dense point correspondences coarse-to-fine.
Our method outperforms existing state-of-the-art approaches in all tested datasets with a strong generalization ability.
- Score: 15.26754768427011
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Point cloud registration is an important task in robotics and autonomous
driving to estimate the ego-motion of the vehicle. Recent advances following
the coarse-to-fine manner show promising potential in point cloud registration.
However, existing methods rely on good superpoint correspondences, which are
hard to be obtained reliably and efficiently, thus resulting in less robust and
accurate point cloud registration. In this paper, we propose a novel network,
named RDMNet, to find dense point correspondences coarse-to-fine and improve
final pose estimation based on such reliable correspondences. Our RDMNet uses a
devised 3D-RoFormer mechanism to first extract distinctive superpoints and
generates reliable superpoints matches between two point clouds. The proposed
3D-RoFormer fuses 3D position information into the transformer network,
efficiently exploiting point clouds' contextual and geometric information to
generate robust superpoint correspondences. RDMNet then propagates the sparse
superpoints matches to dense point matches using the neighborhood information
for accurate point cloud registration. We extensively evaluate our method on
multiple datasets from different environments. The experimental results
demonstrate that our method outperforms existing state-of-the-art approaches in
all tested datasets with a strong generalization ability.
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